2017
DOI: 10.1145/2996197
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Combining Structured Node Content and Topology Information for Networked Graph Clustering

Abstract: Graphs are popularly used to represent objects with shared dependency relationships. To date, all existing graph clustering algorithms consider each node as a single attribute or a set of independent attributes, without realizing that content inside each node may also have complex structures. In this article, we formulate a new networked graph clustering task where a network contains a set of inter-connected (or networked) super-nodes, each of which is a single-attribute graph. The new super-node representatio… Show more

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Cited by 8 publications
(1 citation statement)
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“…Relational topic model (RTM) [5] and iTopic model [23] are two effective Bayesian models based on topic modeling [3]. Normalized cut [22] and Combining Structured Node Content and Topology (CSNCT) [9] are two effective models for network data, which are based on spectral clustering. As a powerful technique to network cluster analysis, several SBM based models are also proposed.…”
Section: Related Workmentioning
confidence: 99%
“…Relational topic model (RTM) [5] and iTopic model [23] are two effective Bayesian models based on topic modeling [3]. Normalized cut [22] and Combining Structured Node Content and Topology (CSNCT) [9] are two effective models for network data, which are based on spectral clustering. As a powerful technique to network cluster analysis, several SBM based models are also proposed.…”
Section: Related Workmentioning
confidence: 99%